Knowledge Editing for Large Language Models: A Survey
Song Wang, Yaochen Zhu, Haochen Liu, Zaiyi Zheng, Chen Chen, Jundong, Li

TL;DR
This survey reviews recent advances in knowledge editing techniques for large language models, focusing on methods that efficiently update models with new information without retraining from scratch.
Contribution
It provides a comprehensive overview, taxonomy, and analysis of KME strategies, highlighting their advantages, limitations, and future research directions.
Findings
KME techniques enable precise knowledge updates in LLMs.
Existing methods vary in efficiency and accuracy.
Challenges include balancing knowledge consistency and model integrity.
Abstract
Large language models (LLMs) have recently transformed both the academic and industrial landscapes due to their remarkable capacity to understand, analyze, and generate texts based on their vast knowledge and reasoning ability. Nevertheless, one major drawback of LLMs is their substantial computational cost for pre-training due to their unprecedented amounts of parameters. The disadvantage is exacerbated when new knowledge frequently needs to be introduced into the pre-trained model. Therefore, it is imperative to develop effective and efficient techniques to update pre-trained LLMs. Traditional methods encode new knowledge in pre-trained LLMs through direct fine-tuning. However, naively re-training LLMs can be computationally intensive and risks degenerating valuable pre-trained knowledge irrelevant to the update in the model. Recently, Knowledge-based Model Editing (KME) has attracted…
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Taxonomy
TopicsTopic Modeling · Natural Language Processing Techniques · Machine Learning in Materials Science
